Is there a way to instruct
dplyr to use
na.rm=TRUE? I would like to take the mean of variables with
summarise_each("mean") but I don't know how to specify it to ignore missing values.
the current dplyr version strongly suggests the use of
across instead of the more specified functions
Translating the below syntax (naming the functions in a named list) into
across could look like this:
library(dplyr) ggplot2::msleep %>% select(vore, sleep_total, sleep_rem) %>% group_by(vore) %>% summarise(across(everything(), .f = list(mean = mean, max = max, sd = sd), na.rm = TRUE)) #> # A tibble: 5 x 7 #> vore sleep_total_mean sleep_total_max sleep_total_sd sleep_rem_mean #> <chr> <dbl> <dbl> <dbl> <dbl> #> 1 carni 10.4 19.4 4.67 2.29 #> 2 herbi 9.51 16.6 4.88 1.37 #> 3 inse~ 14.9 19.9 5.92 3.52 #> 4 omni 10.9 18 2.95 1.96 #> 5 <NA> 10.2 13.7 3.00 1.88 #> # ... with 2 more variables: sleep_rem_max <dbl>, sleep_rem_sd <dbl>
summarise_each is deprecated now, here an option with
- One can still specify
na.rm = TRUEwithin the
funsargument (cf @flodel 's answer: just replace
- But you can also add
na.rm = TRUEafter the
That is useful when you want to call more than only one function, e.g.:
funs() argument is now (soft)deprecated, thanks to comment @Mikko. One can use the suggestions that are given by the warning, see below in the code.
na.rm can still be specified as additional argument within
ggplot2::msleep because it contains NAs and shows this better.
library(dplyr) ggplot2::msleep %>% select(vore, sleep_total, sleep_rem) %>% group_by(vore) %>% summarise_all(funs(mean, max, sd), na.rm = TRUE) #> Warning: funs() is soft deprecated as of dplyr 0.8.0 #> Please use a list of either functions or lambdas: #> #> # Simple named list: #> list(mean = mean, median = median) #> #> # Auto named with `tibble::lst()`: #> tibble::lst(mean, median) #> #> # Using lambdas #> list(~ mean(., trim = .2), ~ median(., na.rm = TRUE))
summarise_at function in
dplyr will summarise a dataset at specific column and allow to remove NAs for each functions applied. Take iris dataset and compute mean and median for variables from Sepal.Length to Petal.Width.
I don't know if my answer will add something to the previous comments. Hopefully yes.
In my case, I had a database from an experiment with two groups (control, exp) with different levels for a specific variable (day) and I wanted to get a summary of mean and sd of another variable (weight) for each group for specific levels of the variable day.
Here is an example of my database:
animal group day weight 1.1 "control" 73 NA 1.2 "control" 73 NA 3.1 "control" 73 NA 9.2 "control" 73 25.2 9.3 "control" 73 23.4 9.4 "control" 73 25.8 2.1 "exp" 73 NA 2.2 "exp" 73 NA 10.1 "exp" 73 24.4 10.2 "exp" 73 NA 10.3 "exp" 73 24.6
So, for instance, in this case I wanted to get the mean and sd of the weight on day 73 for each of the groups (control, exp), omitting the NAs.
I did this with this command:
data[data$day=="73",] %>% group_by(group) %>% summarise(mean(weight[group == "exp"], na.rm=T),sd(weight[group == "exp"], na.rm=T)) data[data$day=="73",] %>% group_by(group) %>% summarise(mean(weight[group == "control"], na.rm=T),sd(weight[group == "control"], na.rm=T))